result = sm.OLS(gold_lookback, silver_lookback ).fit()
After I get the result, how can I get the coefficient and the constant?
In other words, if
y = ax + c
how to get the values a
and c
?
result = sm.OLS(gold_lookback, silver_lookback ).fit()
After I get the result, how can I get the coefficient and the constant?
In other words, if
y = ax + c
how to get the values a
and c
?
You can use the params
property of a fitted model to get the coefficients.
For example, the following code:
import statsmodels.api as sm
import numpy as np
np.random.seed(1)
X = sm.add_constant(np.arange(100))
y = np.dot(X, [1,2]) + np.random.normal(size=100)
result = sm.OLS(y, X).fit()
print(result.params)
will print you a numpy array [ 0.89516052 2.00334187]
- estimates of intercept and slope respectively.
If you want more information, you can use the object result.summary()
that contains 3 detailed tables with model description.
sm.add_constant()
works: it takes a matrix (or a vector, as in my case```, and adds the leftmost column of ones to it. The coefficient corresponding to this column is the intercept.
Commented
Nov 20, 2017 at 9:42
Cribbing from this answer Converting statsmodels summary object to Pandas Dataframe, it seems that the result.summary() is a set of tables, which you can export as html and then use Pandas to convert to a dataframe, which will allow you to directly index the values you want.
So, for your case (putting the answer from the above link into one line):
df = pd.read_html(result.summary().tables[1].as_html(),header=0,index_col=0)[0]
And then
a=df['coef'].values[1]
c=df['coef'].values[0]
Adding up details on @IdiotTom answer.
You may use:
head = pd.read_html(res.summary2().as_html())[0]
body = pd.read_html(res.summary2().as_html())[1]
Not as nice, but the info is there.
The coefficients are saved as a dictionary in the result.params
data frame, that's a pandas Series
. In it, the constant term is stored as Intercept
, as others pointed. The variable terms are stored with their variable names. So, if your model is y ~ x
, the regression coefficients will be available as result.params['Intercept']
(that's b
) and result.params['x']
(that's a
) for the equation y = a*x + b
.
If the input to the API is pandas
objects (i.e. a pd.DataFrame
for the data, or pd.Series
for x and for y), then when you access .params
it will be a pd.Series
, so each coefficient is easily accessible by its name.
For example:
import statsmodels.api as sm
# sm.__version__ is '0.13.1'
df = pd.DataFrame({'x': [0, 1,2,3,4],
'y': [0.1, 0.2, 0.5, 0.5, 0.8]
})
sm.OLS.from_formula(formula='y~x-1', data=df).fit().params
Outputs the following pd.Series
:
x 0.196667
dtype: float64
Allowing for an intercept term (by changing the formula from y~x-1
to y~x
) changes the output to include the intercept under the name Intercept
:
Intercept 0.08
x 0.17
dtype: float64